Crighton Eric J, Elliott Susan J, Kanaroglou Pavlos, Moineddin Rahim, Upshur Ross E G
Department of Geography, University of Ottawa, 60 University Avenue, Simard Hall Room 06, Ottawa, ON, K1N 6N5 Canada.
Geospat Health. 2008 May;2(2):191-202. doi: 10.4081/gh.2008.243.
Pneumonia and influenza represent a significant public health and health care system burden that is expected to increase with the aging of developed nations' populations. The burden of these illnesses is far from uniform however, with recent studies showing that they are both highly spatially and temporally variable. We have combined spatial and time-series analysis techniques to examine pneumonia and influenza hospitalizations in the province of Ontario, Canada, to determine how temporal patterns vary over space, and how spatial patterns of hospitalizations vary over time. Knowledge of these patterns can provide clues to disease aetiology and inform the effective management of health care system resources. Spatial analysis revealed significant clusters of high hospitalization rates in northern and rural counties (Moran's I = 0.186; P <0.05), while county level time series analysis demonstrated significant upward trends in rates in almost a quarter of the counties (P <0.05), and significant seasonality in all but one county (Fisher-Kappa and Barlett Kolmogorov Smirnov tests significant at the level P <0.01). Areas of weak seasonality were typically seen in rural areas with high rates of hospitalizations. The highest levels of spatial clustering of pneumonia and influenza hospitalizations were found to occur in months when rates were lowest. The findings provide evidence of spatio-temporal interaction over the study period, with marked spatial variability in temporal patterns, and temporal variability in spatial patterns. Results point to the need for the effective allocation of services and resources based on regional and seasonal demands, and more regionally focused prevention strategies. This research represents an important step towards understanding the dynamic nature of these illnesses, and sets the stage for the application of spatio-temporal modelling techniques to explain them.
肺炎和流感给公共卫生和医疗保健系统带来了沉重负担,而且随着发达国家人口老龄化,预计这一负担还会加重。然而,这些疾病的负担并不均匀,最近的研究表明,它们在空间和时间上都具有高度变异性。我们结合了空间分析和时间序列分析技术,对加拿大安大略省的肺炎和流感住院情况进行了研究,以确定时间模式如何随空间变化,以及住院的空间模式如何随时间变化。了解这些模式可以为疾病病因提供线索,并为医疗保健系统资源的有效管理提供依据。空间分析显示,北部和农村县的住院率显著聚集(莫兰指数I = 0.186;P <0.05),而县级时间序列分析表明,近四分之一的县住院率呈显著上升趋势(P <0.05),除一个县外,所有县均有显著的季节性(费舍尔-卡帕检验和巴特利特-柯尔莫哥洛夫-斯米尔诺夫检验在P <0.01水平显著)。季节性较弱的地区通常出现在住院率较高的农村地区。肺炎和流感住院率的最高空间聚集水平出现在发病率最低的月份。研究结果证明了在研究期间存在时空相互作用,时间模式存在显著的空间变异性,空间模式也存在时间变异性。结果表明,需要根据区域和季节需求有效分配服务和资源,并制定更具区域针对性的预防策略。这项研究是朝着理解这些疾病的动态性质迈出的重要一步,并为应用时空建模技术来解释这些疾病奠定了基础。